In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actors who play a similar role in a system. In particular, we analyze weighted bipartite networks that describes the relationships between actors on one side and features or traits on the other, together with the intensity level to which actors show their features. We develop a methodological approach that takes into account the underlying multivariate dependence among groups of actors. The idea is that positions in a network could be defined on the basis of the similar intensity levels that the actors exhibit in expressing some features, instead of just considering relationships that actors hold with each others. Moreover, we propose a new clustering procedure that exploits the potentiality of copula functions, a mathematical instrument for the modelization of the stochastic dependence structure. Our clustering algorithm can be applied both to binary and realvalued matrices. We validate it with simulations and applications to real-world data.

Chessa, A., Crimaldi, I., Riccaboni, M., Trapin, L., Cluster analysis of weighted bipartite networks: A new copula-based approach, <<PLOS ONE>>, 2014; 9 (10): N/A-N/A. [doi:10.1371/journal.pone.0109507] [http://hdl.handle.net/10807/119984]

Cluster analysis of weighted bipartite networks: A new copula-based approach

Trapin, Luca
2014

Abstract

In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actors who play a similar role in a system. In particular, we analyze weighted bipartite networks that describes the relationships between actors on one side and features or traits on the other, together with the intensity level to which actors show their features. We develop a methodological approach that takes into account the underlying multivariate dependence among groups of actors. The idea is that positions in a network could be defined on the basis of the similar intensity levels that the actors exhibit in expressing some features, instead of just considering relationships that actors hold with each others. Moreover, we propose a new clustering procedure that exploits the potentiality of copula functions, a mathematical instrument for the modelization of the stochastic dependence structure. Our clustering algorithm can be applied both to binary and realvalued matrices. We validate it with simulations and applications to real-world data.
2014
AREA13 - SCIENZE ECONOMICHE E STATISTICHE
Articolo su rivista presente in almeno un database (EconLit, MatScinet, Scopus, Web of Knowledge, Publish or perish)
Inglese
Articolo in rivista
Inglese
Algorithms; Humans; Cluster Analysis; Computer Simulation; Models, Theoretical; Medicine (all); Biochemistry, Genetics and Molecular Biology (all); Agricultural and Biological Sciences (all)
Settore SECS-P/05 - ECONOMETRIA
Public Library of Science
9
10
2014
N/A
N/A
e109507
Articolo su rivista scientifica / specializzata
info:eu-repo/semantics/article
Chessa, A., Crimaldi, I., Riccaboni, M., Trapin, L., Cluster analysis of weighted bipartite networks: A new copula-based approach, <<PLOS ONE>>, 2014; 9 (10): N/A-N/A. [doi:10.1371/journal.pone.0109507] [http://hdl.handle.net/10807/119984]
open
262
Chessa, Alessandro; Crimaldi, Irene; Riccaboni, Massimo; Trapin, Luca
4
art_per_29
03. Contributo in rivista::Articolo in rivista, Nota a sentenza
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/119984
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